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PDE Collection
This dataset contains numerical solutions of canonical Partial
Differential Equations (PDEs) generated with the
ines-lang/pde-solver.
It provides standardized datasets for benchmarking PDE solvers, machine
learning surrogates, and physics-informed methods.
Dataset Structure
When running the solver locally, the directory structure is organized by
dimension first (e.g., 1D/, 2D/, 3D/), then by PDE type and
initial condition (IC).
However, on Hugging Face the datasets follow a slightly different
organization: files are grouped by PDE type first, then by
dimension.
This difference ensures consistency when browsing multiple PDE datasets.
Example Hugging Face structure for a PDE dataset:
pde/
βββ 1D/
β βββ ic/
β βββ dataset.h5
β βββ metadata.json
β βββ plots/
β βββ variable0.000_channel_0.png # Example visualization for 1D
βββ 2D/
β βββ ...
File descriptions:
dataset.h5: HDF5 file with the PDE solution data (multi-dimensional arrays over space and time).metadata.json: Describes PDE type, dimensionality, ICs, BCs, solver method, and parameters.plots/: Folder with quick-look PNG visualizations of generated seeds for inspection.
Applications
This dataset supports research and education in scientific computing and machine learning:
- Benchmarking: Standardized data for evaluating PDE solvers and surrogate models.
- Machine Learning: Training physics-informed and reduced-order models for dynamical systems.
- Reproducibility: Consistent metadata and structure enable reliable comparisons across studies.
- Extensibility: Easily adapted to new PDEs, parameter regimes, or boundary conditions.
By combining reproducible datasets with rich metadata, this resource bridges numerical analysis and modern ML, providing a foundation for standardized benchmarks in data-driven PDE modeling.
License
Released under the MIT License --- free to use, modify, and share with attribution.
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